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A New Lagrangian Relaxation Approach for Multistage Stochastic Programs under Endogenous Uncertainties

机译:内源性不确定性下多级随机节目的新拉格朗日放松方法

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Optimization problems with endogenous(decision-dependent)uncertainties are commonly observed in process industry.Most optimization problems with endogenous uncertainties,by nature,can be modelled as multi-period multi-stage stochastic programs(MSSPs),where possible future states of the system are modelled as scenarios by enumerating all possible outcomes of uncertain parameters.However,MSSPs rapidly grow and quickly become computationally intractable for real-world problems.This paper presents a new Lagrangian relaxation for obtaining valid dual bounds for MSSPs under endogenous uncertainties.By exploiting the structure of the MSSP,a tight dual problem is formulated,which reduces the total number of Lagrangian multipliers.The paper also introduces a modified multiplier-updating scheme.We applied the new Lagrangian relaxation to bound instances of artificial lift infrastructure planning(ALIP)problem under uncertain production rates and the clinical trial planning(CTP)problem under uncertain clinical trial outcomes.The computational results reveal that the proposed Lagrangian relaxation generates tight dual bounds compared to the original Lagrangian relaxation formulation and that the proposed multiplier-updating scheme reduces the zigzagging behavior of the Lagrangian dual solutions as iterations progress.
机译:内源性(决策)不确定性的优化问题通常在过程行业中观察到。大自然可以以内源性不确定性的最佳优化问题,可以建模为多时期多阶段随机计划(MSSPS),其中未来系统的未来状态通过枚举不确定参数的所有可能结果来建模。然而,MSSP迅速增长并迅速变得对实际问题的计算上的棘手。本文提出了一种新的拉格朗日放松,用于在内源性不确定性下获得MSSP的有效双限制.B:利用MSSP的结构,制定了紧密的双重问题,这减少了拉格朗日乘法器的总数。本文还介绍了修改的乘数更新方案。我们将新的拉格朗日放松应用于人工升降基础设施规划(ALIP)问题的绑定实例在不确定的生产率和尚特征下的临床试验规划(CTP)问题下临床试验结果。计算结果表明,与原始拉格朗日放松制定相比,建议的拉格朗日放松产生了紧密的双界,并且所提出的乘法更新方案降低了拉格朗日双解决方案的曲折行为作为迭代进展。

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